Less is More: Empowering GUI Agent with Context-Aware Simplification
- URL: http://arxiv.org/abs/2507.03730v1
- Date: Fri, 04 Jul 2025 17:37:15 GMT
- Title: Less is More: Empowering GUI Agent with Context-Aware Simplification
- Authors: Gongwei Chen, Xurui Zhou, Rui Shao, Yibo Lyu, Kaiwen Zhou, Shuai Wang, Wentao Li, Yinchuan Li, Zhongang Qi, Liqiang Nie,
- Abstract summary: We propose a context-aware framework for building an efficient and effective GUI Agent, termed SimpAgent.<n>With the above components, SimpAgent reduces 27% FLOPs and achieves superior GUI navigation performances.
- Score: 62.02157661751793
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The research focus of GUI agents is shifting from text-dependent to pure-vision-based approaches, which, though promising, prioritize comprehensive pre-training data collection while neglecting contextual modeling challenges. We probe the characteristics of element and history contextual modeling in GUI agent and summarize: 1) the high-density and loose-relation of element context highlight the existence of many unrelated elements and their negative influence; 2) the high redundancy of history context reveals the inefficient history modeling in current GUI agents. In this work, we propose a context-aware simplification framework for building an efficient and effective GUI Agent, termed SimpAgent. To mitigate potential interference from numerous unrelated elements, we introduce a masking-based element pruning method that circumvents the intractable relation modeling through an efficient masking mechanism. To reduce the redundancy in historical information, we devise a consistency-guided history compression module, which enhances implicit LLM-based compression through innovative explicit guidance, achieving an optimal balance between performance and efficiency. With the above components, SimpAgent reduces 27% FLOPs and achieves superior GUI navigation performances. Comprehensive navigation experiments across diverse web and mobile environments demonstrate the effectiveness and potential of our agent.
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